Title :
Using the marginalised particle filter for real-time visual-inertial sensor fusion
Author :
Bleser, Gabriele ; Stricker, Didier
Author_Institution :
Dept. for Virtual & Augmented Reality, Fraunhofer IGD, Darmstadt
Abstract :
The use of a particle filter (PF) for camera pose estimation is an ongoing topic in the robotics and computer vision community, especially since the FastSLAM algorithm has been utilised for simultaneous localisation and mapping (SLAM) applications with a single camera. The major problem in this context consists in the poor proposal distribution of the camera pose particles obtained from the weak motion model of a camera moved freely in 3D space. While the FastSLAM 2.0 extension is one possibility to improve the proposal distribution, this paper addresses the question of how to use measurements from low-cost inertial sensors (gyroscopes and accelerometers) to compensate for the missing control information. However, the integration of inertial data requires the additional estimation of sensor biases, velocities and potentially accelerations, resulting in a state dimension, which is not manageable by a standard PF. Therefore, the contribution of this paper consists in developing a real-time capable sensor fusion strategy based upon the marginalised particle filter (MPF) framework. The performance of the proposed strategy is evaluated in combination with a marker-based tracking system and results from a comparison with previous visual-inertial fusion strategies based upon the extended Kalman filter (EKF), the standard PF and the MPF are presented.
Keywords :
Kalman filters; particle filtering (numerical methods); pose estimation; robot vision; sensor fusion; accelerometers; camera pose estimation; extended Kalman filter; gyroscopes; inertial data; inertial sensors; marginalised particle filter; marker-based tracking system; real-time visual-inertial sensor fusion; Application software; Cameras; Computer vision; Context modeling; Particle filters; Proposals; Robot sensing systems; Robot vision systems; Sensor fusion; Simultaneous localization and mapping; (extended) Kalman filter; (marginalised) particle filter; Algorithms; Design; Experimentation; Fast-SLAM; G.3 [Probability and statistics]: Experimental design, Markov processes, Multivariate statistics, Nonparametric statistics, Probabilistic algorithms (including Monte Carlo), Statistical computing; I.2.10 [Artificial intelligence]: Vision and Scene Understanding—Motion, Video analysis; I.2.9 [Artificial intelligence]: Robotics—Kinematics and dynamics, Sensors; I.3.m [Computer graphics]: Miscellaneous—Augmented Reality; I.4.8 [Image processing and computer vision]: Scene analysis—Motion, Sensor fusion, Tracking; Performance; Theory; Verification; inertial sensors; nonlinear filtering; real-time; sensor fusion;
Conference_Titel :
Mixed and Augmented Reality, 2008. ISMAR 2008. 7th IEEE/ACM International Symposium on
Conference_Location :
Cambridge
Print_ISBN :
978-1-4244-2840-3
Electronic_ISBN :
978-1-4244-2859-5
DOI :
10.1109/ISMAR.2008.4637316